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Diagnosis of osteoporosis by extraction of trabecular features from hip radiographs using support vector machine: An investigation panorama with DXA

机译:通过使用支持向量机从髋部X光片中提取小梁骨特征来诊断骨质疏松症:DXA调查全景图

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Background: Lifespan and its quality can be improved by early diagnosis of osteoporosis. Analysis of trabecular boundness on digital hip radiographs could be useful for identifying subjects with low bone mineral density (BMD) or osteoporosis. The main aim of our study was to evaluate the ability of a kernel-based support vector machine (SVM) with respect to diagnosis and add to knowledge about the trabecular features of digital hip radiographs for identifying subjects with low BMD. Method: In this paper we present an SVM kernel classifier-based computer-aided diagnosis (CAD) system for osteoporotic risk detection using digital hip radiographs. Initially, the original radiograph was intensified, then trabecular features such as boundness, orientation, solidity of spur and delta were evaluated and radial bias function (RBF) based discrimination was manifested. The next step was the evaluation of the diagnostic capability of the proposed method in order to spot subjects with low BMD at the femoral neck in 50 (50.7±14.3 years) South Indian women with no previous history of osteoporotic fracture. Out of 50 subjects, 28 were used to train the classifier and the other 22 were used for testing. Results: The proposed system has achieved the highest classification accuracy documented so far by means of a fivefold cross-validation analysis with mean accuracy of 90% (95% confidence interval (CI): 82 to 98%); sensitivity and positive predictive value (PPV) were 90% (95% CI: 82 to 98%) and 89% (95% CI: 81 to 97%), respectively. Pearson's correlation was observed at the level of p<0.001, between extracted image trabecular features with age and BMDs measured by dual energy x-ray absorptiometry (DXA). Extracted image features also demonstrated significant differences between high and low BMD groups at the level of p<0.001. Conclusion: Our findings suggest that the proposed CAD system with SVM would be useful for spotting women vulnerable to osteoporotic risk.
机译:背景:早期诊断骨质疏松症可以改善寿命及其质量。在数字式髋部X射线照片上分析小梁边界,可能有助于识别骨密度低或骨质疏松的受试者。我们研究的主要目的是评估基于内核的支持向量机(SVM)的诊断能力,并增加有关数字髋部X光片小梁特征的知识,以识别低BMD的受试者。方法:在本文中,我们介绍了一种基于SVM核分类器的计算机辅助诊断(CAD)系统,用于使用数字髋部X光片进行骨质疏松症风险检测。最初,对原始的X射线照片进行了增强,然后评估了骨小梁的特征,例如边界,方向,骨刺和三角形的坚固性,并基于径向偏倚函数(RBF)进行了区分。下一步是评估所提出方法的诊断能力,以发现50名(50.7±14.3岁)南印度女性中没有骨质疏松性骨折史的股骨颈BMD低的受试者。在50名受试者中,有28名用于训练分类器,另外22名用于测试。结果:所提出的系统通过五重交叉验证分析实现了迄今为止记录的最高分类准确性,平均准确性为90%(95%置信区间(CI):82至98%);敏感性和阳性预测值(PPV)分别为90%(95%CI:82至98%)和89%(95%CI:81至97%)。皮尔逊相关性在p <0.001的水平上被观察到,该图像与年龄和BMDs的提取图像骨小梁特征之间的关系通过双能X射线吸收法(DXA)测量。提取的图像特征还表明,高BMD组和低BMD组之间的显着差异为p <0.001。结论:我们的发现表明,建议的支持SVM的CAD系统将有助于发现易患骨质疏松症风险的女性。

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